抽象的な

Application of successive projections algorithm on spectral monitoring of rice leaves nitrogen contents

Ming-Bo Liu, Yan-Lin Tang, Xiao-Li Li, Jia Lou


Visible-NIR reflective spectrum was used to predict the nitrogen contents of rice leaves. Different preprocessing methods were used in pretreatment of the original spectra. The effective wavelengths were selected by successive projections algorithm (SPA) for original spectra and pretreated spectra.Multiple linear regression (MLR) models and Partial least squares regression (PLS) models were built respectively. SPA could reduce the dimensions of spectralmatrix efficiently. In the models established on SPA effective wavelength,MLR model and PLSmodel based on multiplicative scatter correction (MSC) pretreated spectrum had the best predicting effect with r=0.7943 and RMSE=0.4558. In PLS models established on all wavelengths, the best predicting effect model was that based on MSC pretreated spectrumwith r=0.8470 and RMSE=0.3953.


免責事項: この要約は人工知能ツールを使用して翻訳されており、まだレビューまたは確認されていません

インデックス付き

  • キャス
  • Google スカラー
  • Jゲートを開く
  • 中国国家知識基盤 (CNKI)
  • サイテファクター
  • コスモスIF
  • 電子ジャーナルライブラリ
  • 研究ジャーナル索引作成ディレクトリ (DRJI)
  • 秘密検索エンジン研究所
  • ICMJE

もっと見る

ジャーナルISSN

ジャーナル h-インデックス

Flyer

オープンアクセスジャーナル